Offered By: IBM
Prognostication using Neural Network in Agriculture
In this lab, we will learn the basic methods of forecasting using Linear Regression and Neural Networks.
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493 EnrolledAt a Glance
In this lab, we will learn the basic methods of forecasting using Linear Regression and Neural Networks.
- Download and preliminary analysis of the data
- Forecasting
- Artificial neural networks
- Downloading data
- Changing the data types of columns
- Grouping data
- Data set transformation
- Hypothesis creation
- Splitting the data set into training and test sets
- Creating a linear model using sklearn
- Calculation of basic statistical indicators
- Creating a linear model using statsmodels
- Creating a linear model using scikit-learn
- Creating a linear model using Keras
Prerequisites
- Python - basic level
- Pandas - basic level
- SeaBorn - basic level
- Statistics - basic level
- Scikit-learn - basic level
- Keras - basic level
After completing this lab, you will be able to:
- Download a data set from *.csv files.
- Automatically change the data in the set.
- Transform a table
- Visualize data with pandas and seaborn
- Make linear forecast models
- Build and fit neural networks.
Estimated Effort
1 Hour
Level
Intermediate
Industries
Agriculture
Skills You Will Learn
Artificial Intelligence, Data Science, Machine Learning
Course Code
GPXX04P5EN